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Neural Networks Based Lyapunov Functions for Transient Stability Analysis and Assessment of Power Systems

Tong Wang, Xiaotong Wang, Guangmeng Liu, Zengping Wang, Qipeng Xing

2022IEEE Transactions on Industry Applications33 citationsDOI

Abstract

This article presents the Lyapunov functions based on the artificial intelligence (AI) method for transient stability assessment and the determination of stability region (SR). First, Lyapunov stability theory and the definition of SR are introduced. Then, the characteristics of neural networks as a general function approximator are employed as the Lyapunov function learner, and the Lyapunov function is constructed combined with stochastic gradient descent (SGD). Then, the falsifier's task is to find the state vectors that violate Lyapunov stability conditions, and the counterexamples would be added to the training set for the function learner to accelerate convergence. After obtaining the Lyapunov function of power system, the estimation of SR boundary can be represented by the maximum level set of Lyapunov function. Finally, the IEEE 9-bus 3-machine system is used as test system to demonstrate the validity and effectiveness of the proposed construction method of Lyapunov functions for power system transient stability analysis.

Topics & Concepts

Lyapunov functionLyapunov redesignControl theory (sociology)Lyapunov equationLyapunov optimizationLyapunov exponentControl-Lyapunov functionArtificial neural networkLyapunov stabilityStability (learning theory)Electric power systemComputer scienceMathematicsPower (physics)Artificial intelligenceMachine learningChaoticNonlinear systemPhysicsControl (management)Quantum mechanicsPower System Optimization and StabilityPower Systems Fault DetectionSmart Grid and Power Systems
Neural Networks Based Lyapunov Functions for Transient Stability Analysis and Assessment of Power Systems | Litcius